Learning and evaluating the content and structure of a term taxonomy

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Publication Type Journal Article
School or College College of Engineering
Department Computing, School of
Creator Riloff, Ellen M.
Other Author Kozareva, Zornitsa; Hovy, Eduard
Title Learning and evaluating the content and structure of a term taxonomy
Date 2009
Description In this paper, we describe a weakly supervised bootstrapping algorithm that reads Web texts and learns taxonomy terms. The bootstrapping algorithm starts with two seed words (a seed hypernym (Root concept) and a seed hyponym) that are inserted into a doubly anchored hyponym pattern. In alternating rounds, the algorithm learns new hyponym terms and new hypernym terms that are subordinate to the Root concept. We conducted an extensive evaluation with human annotators to evaluate the learned hyponym and hypernym terms for two categories: animals and people.
Type Text
Publisher Association for the Advancement of Artificial Intelligence (AAAI)
First Page 1
Last Page 8
Subject Weakly supervised; Bootstrapping algorithm; Seed hypernym; Seed hyponym; Root concept; Term taxonomy; Learning by reading systems
Subject LCSH Information retrieval
Language eng
Bibliographic Citation Kozareva, Z., Hovy, E., & Riloff, E. M. (2009). Learning and evaluating the content and structure of a term taxonomy. AAAI-09 Spring Symposium on Learning by Reading and Learning to Read, 1-8.
Rights Management (c)AAAI http://www.aaai.org/
Format Medium application/pdf
Format Extent 119,774 bytes
Identifier ir-main,12419
ARK ark:/87278/s65d991s
Setname ir_uspace
ID 703626
Reference URL https://collections.lib.utah.edu/ark:/87278/s65d991s
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